Performance Evaluation of Parallel Sortings on the Supercomputer Fugaku

Tomoyuki Tokuue, T. Ishiyama
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Abstract

Sorting is one of the most basic algorithms, and developing highly parallel sorting programs is becoming increasingly important in high-performance computing because the number of CPU cores per node in modern supercomputers tends to increase. In this study, we have implemented two multi-threaded sorting algorithms based on samplesort and compared their performance on the supercomputer Fugaku. The first algorithm divides an input sequence into multiple blocks, sorts each block, and then selects pivots by sampling from each block at regular intervals. Each block is then partitioned using the pivots, and partitions in different blocks are merged into a single sorted sequence. The second algorithm differs from the first one in only selecting pivots, where the binary search is used to select pivots such that the number of elements in each partition is equal. We compare the performance of the two algorithms with different sequential sorting and multiway merging algorithms. We demonstrate that the second algorithm with BlockQuicksort (a quicksort accelerated by reducing conditional branches) for sequential sorting and the selection tree for merging shows consistently high speed and high parallel efficiency for various input data types and data sizes.
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超级计算机Fugaku上并行排序的性能评价
排序是最基本的算法之一,开发高度并行的排序程序在高性能计算中变得越来越重要,因为现代超级计算机中每个节点的CPU内核数量趋于增加。在本研究中,我们实现了两种基于samplesort的多线程排序算法,并比较了它们在超级计算机Fugaku上的性能。第一种算法将输入序列划分为多个块,对每个块进行排序,然后通过定期从每个块中采样来选择枢轴。然后使用枢轴对每个块进行分区,并将不同块中的分区合并为单个排序序列。第二种算法与第一种算法的不同之处在于,它只选择枢轴,其中使用二分搜索来选择枢轴,使每个分区中的元素数量相等。我们比较了两种算法在不同顺序排序和多路合并算法下的性能。我们证明了第二种算法使用BlockQuicksort(通过减少条件分支加速的快速排序)进行顺序排序和选择树进行合并,对于各种输入数据类型和数据大小都显示出一致的高速和高并行效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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